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Low-Complexity Failed Element Diagnosis for Radar-Communication mmWave Antenna Array with Low SNR

机译:低信噪比的雷达通信毫米波天线阵列低复杂性故障诊断

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The millimeter-wave (mmWave) antenna array plays an important role in the excellent performance of wireless sensors networks (WSN) or unmanned aerial vehicle (UAV) clusters. However, the array elements are easily damaged in its harsh working environment but hard to be repaired or exchanged timely, resulting in a serious decline in the beamforming performance. Thus, accurate self-diagnosis of the failed elements is of great importance. In previous studies, there are still significant difficulties for large-scale arrays under extremely low SNR. In this paper, a diagnosis algorithm with low complexity and high reliability for the failed elements is proposed, which is based on a joint decision of communication signal and sensing echoes. Compared with the previous studies, the complexity of the algorithm is reduced by the construction of low-dimensional feature vectors for classification, the decoupling of the degree of arrival (DOA) estimation and the failed pattern diagnosis, with the help of the sub-array division. Simulation results show that, under an ultra-low SNR of ?12.5 dB for communication signals and ?16 dB for sensing echoes, an accurate self-diagnosis with a block error rate lower than 8% can be realized. The study in this paper will effectively promote the long-term and reliable operation of the mmWave antenna array in WSN, UAV clusters and other similar fields.
机译:毫米波(mmWave)天线阵列在无线传感器网络(WSN)或无人机(UAV)集群的出色性能中起着重要作用。然而,阵列元件在其恶劣的工作环境中容易损坏,但是难以及时维修或更换,从而导致波束成形性能严重下降。因此,对故障元件进行准确的自我诊断非常重要。在以前的研究中,在极低的SNR下,大规模阵列仍然存在很大的困难。本文提出了一种基于通信信号和回波感知的联合决策的故障元素复杂度低,可靠性高的诊断算法。与先前的研究相比,该算法通过构建用于分类的低维特征向量,去向度(DOA)估计的去耦和故障模式诊断(借助子阵列)而降低了师。仿真结果表明,在通信信号的SNR低至12.5 dB,感测回波的SNR低至16 dB的情况下,可以实现准确的自诊断,且误码率低于8%。本文的研究将有效地促进毫米波天线阵列在WSN,UAV机群和其他类似领域的长期可靠运行。

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